Detection of Node Capture under Asynchronous Sleep Mode Based on Recurrent Neural Network

CONVERTER Pub Date : 2021-01-01 DOI:10.17762/converter.51
Jintao Gu, Jianyu Wang, Hao Sun
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引用次数: 1

Abstract

In recent years, wireless sensor networks (WSNs) have found numerousapplications in industrial manufacturing and people’s daily lives. However, security risks associated with the use of WSNs have also become increasingly pronounced. An attacker launching an internal attack on a WSNmust first physically capture several nodes, i.e., take control of the target nodes by acquiring, cracking, and analyzing important information carried by the target nodes, thus laying the groundwork for subsequent attack steps. Therefore, physical node capture is a critical step in an internal attack on aWSN. Detecting behaviorsthat indicatephysical capture of nodes provides an early warning of anetwork attack, allowing steps to be taken to prevent further attacks from being launched from the captured nodes. This paper proposes an RNN (recurrent neural network)-based detection method that can be used to detect node capture in WSNs with asynchronous sleep mode at an early stage (i.e., before captured nodes rejoin the network).Thus, the methodenables early detection of network attacks. During the decision-making process, a common monitoring mechanism that relies on cooperation between neighboring nodes is employed to improve detection accuracy. The proposed method obtains the sensor nodes’ states and makes a judgment with the help of RNN, achieving accurate detection of node capture under the condition of unsynchronized clocks. Simulation results demonstrate the proposed method’s capability to achieve high detection accuracy.
基于递归神经网络的异步睡眠模式下节点捕获检测
近年来,无线传感器网络在工业制造和人们的日常生活中得到了广泛的应用。然而,与无线传感器网络的使用相关的安全风险也变得越来越明显。攻击者要对wsn进行内部攻击,首先必须物理地捕获多个节点,即通过获取、破解和分析目标节点携带的重要信息来控制目标节点,为后续的攻击步骤奠定基础。因此,物理节点捕获是aWSN内部攻击的关键步骤。检测表明节点物理捕获的行为提供了网络攻击的早期预警,允许采取措施防止从捕获的节点发起进一步的攻击。本文提出了一种基于RNN(递归神经网络)的检测方法,该方法可以在早期阶段(即在捕获的节点重新加入网络之前)检测具有异步睡眠模式的WSNs中的节点捕获。因此,该方法可以早期发现网络攻击。在决策过程中,采用一种基于相邻节点间协作的通用监控机制,提高检测精度。该方法获取传感器节点的状态并借助RNN进行判断,实现了时钟不同步情况下节点捕获的准确检测。仿真结果表明,该方法具有较高的检测精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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